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Causal driver detection with deviance information criterion

机译:具有偏差信息标准的因果司机检测

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Causal explanatory study is a very important research method in empirical research. The outcome of a quantitative MIS research frequently reports significant factors of a causal model. Locating causal drivers is in some sense similar to feature selection in data mining. This study uses Bayesian regressions and Markov Chain Monte Carlo simulations to detect drivers in a research model of information systems study. Deviance information criterion is used to compare Bayesian models resulted from different prior distributions. Differential evolution and a deterministic type iterative procedure are proposed to find the best prior distribution, which is used to find drivers of the final Bayesian regression model. Experimental results show that these approaches can locate more interesting drivers of the research model.
机译:因果解释性研究是实证研究中的一个非常重要的研究方法。定量MIS研究的结果经常报告因果模型的重大因素。定位因果驱动程序在某种意义上类似于数据挖掘中的特征选择。本研究使用贝叶斯回归和马尔可夫链蒙特卡罗模拟来检测信息系统研究的研究模式中的驱动程序。偏差信息标准用于比较贝叶斯模型由不同的先前分布产生。建议差分演进和确定性类型迭代程序找到最佳的先前分配,用于找到最终贝叶斯回归模型的驱动程序。实验结果表明,这些方法可以定位研究模型的更有趣的驱动因素。

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